July  2008, 4(3): 631-646. doi: 10.3934/jimo.2008.4.631

EA for solving combined machine layout and job assignment problems

1. 

School of Aerospace, Mechanical and Civil Engineering, University of New South Wales, Australian Defence Force Academy, Canberra, Australia

2. 

School of Information Technology and Electrical Engineering, University of New South Wales, Australian Defence Force Academy, Canberra, Australia

Received  June 2007 Revised  May 2008 Published  July 2008

Machine layout and material flow between machines are crucial considerations for improving productivity in any manufacturing environment. The machine layout and the operations assignment problems are both known to be NP hard problems. In this paper, we consider a combined machine layout and job assignment problem and introduce an evolutionary algorithm to solve this combined problem. The usefulness of our approach is demonstrated through numerical examples.
Citation: Tapabrata Ray, Ruhul Sarker. EA for solving combined machine layout and job assignment problems. Journal of Industrial & Management Optimization, 2008, 4 (3) : 631-646. doi: 10.3934/jimo.2008.4.631
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